Data Scientist - Computational Genomics, 12-month FTC

relationrx
Charing Cross, United Kingdom
2 days ago

Role details

Contract type
Temporary contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Compensation
£ 55K

Job location

Charing Cross, United Kingdom

Tech stack

Data analysis
Bioinformatics
Computational Biology
Python
Machine Learning
High Performance Computing
GIT
Software Version Control

Job description

We are scaling rapidly and building a team of exceptional individuals to push the boundaries of drug discovery. You will work in highly interdisciplinary teams where biology, computation, and engineering come together to solve complex problems that have not been solved before. Our state-of-the-art wet and dry labs in the heart of London are designed to accelerate this integration and translate insight into impact., This is a unique opportunity for a Data Scientist to bridge the gap between computational genomics and machine learning at scale. Operating at the genomics-ML interface, you will shape our computational genomics efforts to accelerate target identification and validation across diverse therapeutic areas, leveraging large-scale human genetics resources - genetic discovery, biobanks, OMICs, single-cell atlases and other internal datasets- to gain actionable insight. By building, refining and deploying cutting-edge ML-focussed methods you will inform robust functional prioritisation frameworks, mechanistic hypotheses, and strategic decision-making across the organisation.

Day to Day you will:

  • Apply, build, refine and integrate statistical models to gain insight from genomics, transcriptomics and other OMICs datasets and support target discovery and validation.
  • Work cross-functionally at the ML-genetics interface to identify opportunities, solve problems and implement solutions for shared insight
  • Integrate human genetics evidence with OMICs datasets (e.g. transcriptomics, proteomics) to uncover disease mechanisms and prioritise actionable targets.
  • Develop scalable computational workflows for reproducible analysis within Relation's existing stack
  • Partner closely with experimental and machine learning researchers to validate hypotheses, interpret results, and guide downstream studies.
  • Communicate findings clearly to internal stakeholders, including presenting methods, results, and recommendations.
  • Contribute to publications, scientific communications, and project documentation, supporting scientific excellence and external visibility.

Requirements

  • PhD in statistical genetics, genomics, computational biology, machine learning, bioinformatics, or a related quantitative field.
  • Knowledge of machine learning techniques applied to biological data
  • Experience in quantitative genomics, statistics, bioinformatics, or multi-omics data analysis.
  • Proficiency in Python (preferred), or R, and familiarity with high-performance computing environments, collaborative coding and version control (e.g. git)
  • Bonus experience:
  • Familiarity with single-cell transcriptomics or patient-derived datasets.
  • Experience working in interdisciplinary/matrixed teams within biotech or pharma settings.
  • Understanding of the end-to-end drug discovery process and how genetic evidence informs decision-making.

Personally, you:

Are comfortable working in a matrixed environment, balancing multiple stakeholders and contributing effectively across teams.

Take ownership of your work, proactively seek opportunities to contribute, and enable others to do their best work.

Communicate openly and directly, give and receive feedback constructively, and handle challenging conversations with respect.

Actively seek out diverse perspectives, build strong working relationships, and contribute to shared goals across teams.

Embrace challenges with openness and resilience, set high standards for yourself, and strive to deliver meaningful outcomes.

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